Incentive-based task offloading for digital twins in 6G native artificial intelligence networks: a learning approach
Tianjiao CHEN , Xiaoyun WANG , Meihui HUA , Qinqin TANG
Front. Inform. Technol. Electron. Eng ›› 2025, Vol. 26 ›› Issue (2) : 214 -229.
Incentive-based task offloading for digital twins in 6G native artificial intelligence networks: a learning approach
A communication network can natively provide artificial intelligence (AI) training services for resource-limited network entities to quickly build accurate digital twins and achieve high-level network autonomy. Considering that network entities that require digital twins and those that provide AI services may belong to different operators, incentive mechanisms are needed to maximize the utility of both. In this paper, we establish a Stackelberg game to model AI training task offloading for digital twins in native AI networks with the operator with base stations as the leader and resource-limited network entities as the followers. We analyze the Stackelberg equilibrium to obtain equilibrium solutions. Considering the time-varying wireless network environment, we further design a deep reinforcement learning algorithm to achieve dynamic pricing and task offloading. Finally, extensive simulations are conducted to verify the effectiveness of our proposal.
Digital twin network / Native artificial intelligence / Stackelberg game / Task offloading / Deep reinforcement learning
Zhejiang University Press
Supplementary files
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